School of Information Science and Engineering, NingboTech University, Ningbo 315100, China.
School of Information Science and Engineering, Zhejiang Sci-Tech University, Hangzhou 310018, China.
Biosensors (Basel). 2022 Nov 28;12(12):1087. doi: 10.3390/bios12121087.
Nowadays, major depressive disorder (MDD) has become a crucial mental disease that endangers human health. Good results have been achieved by electroencephalogram (EEG) signals in the detection of depression. However, EEG signals are time-varying, and the distributions of the different subjects' data are non-uniform, which poses a bad influence on depression detection. In this paper, the deep learning method with domain adaptation is applied to detect depression based on EEG signals. Firstly, the EEG signals are preprocessed and then transformed into pictures by two methods: the first one is to present the three channels of EEG separately in the same image, and the second one is the RGB synthesis of the three channels of EEG. Finally, the training and prediction are performed in the domain adaptation model. The results indicate that the domain adaptation model can effectively extract EEG features and obtain an average accuracy of 77.0 ± 9.7%. This paper proves that the domain adaptation method can effectively weaken the inherent differences of EEG signals, making the diagnosis of different users more accurate.
如今,重度抑郁症(MDD)已成为危害人类健康的重要精神疾病。脑电图(EEG)信号在抑郁症检测方面取得了良好的效果。然而,EEG 信号是时变的,不同受试者数据的分布不均匀,这对抑郁症检测产生了不良影响。本文应用具有域自适应的深度学习方法,基于 EEG 信号检测抑郁症。首先,对 EEG 信号进行预处理,然后通过两种方法将其转换为图片:第一种方法是将 EEG 的三个通道分别呈现在同一张图像中,第二种方法是将 EEG 的三个通道进行 RGB 合成。最后,在域自适应模型中进行训练和预测。结果表明,域自适应模型可以有效地提取 EEG 特征,平均准确率为 77.0±9.7%。本文证明了域自适应方法可以有效地削弱 EEG 信号的固有差异,使不同用户的诊断更加准确。